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Bayesian Disturbance Injection: Robust imitation learning of flexible policies for robot manipulation.
Oh, Hanbit; Sasaki, Hikaru; Michael, Brendan; Matsubara, Takamitsu.
Afiliação
  • Oh H; Division of Information Science, Graduate School of Science and Technology, NAIST, 8916-5, Takayama-cho, Ikoma-city, 630-0192, Nara, Japan. Electronic address: oh.hanbit.oe9@is.naist.jp.
  • Sasaki H; Division of Information Science, Graduate School of Science and Technology, NAIST, 8916-5, Takayama-cho, Ikoma-city, 630-0192, Nara, Japan.
  • Michael B; Division of Information Science, Graduate School of Science and Technology, NAIST, 8916-5, Takayama-cho, Ikoma-city, 630-0192, Nara, Japan.
  • Matsubara T; Division of Information Science, Graduate School of Science and Technology, NAIST, 8916-5, Takayama-cho, Ikoma-city, 630-0192, Nara, Japan.
Neural Netw ; 158: 42-58, 2023 Jan.
Article em En | MEDLINE | ID: mdl-36442373
ABSTRACT
Humans demonstrate a variety of interesting behavioral characteristics when performing tasks, such as selecting between seemingly equivalent optimal actions, performing recovery actions when deviating from the optimal trajectory, or moderating actions in response to sensed risks. However, imitation learning, which attempts to teach robots to perform these same tasks from observations of human demonstrations, often fails to capture such behavior. Specifically, commonly used learning algorithms embody inherent contradictions between the learning assumptions (e.g., single optimal action) and actual human behavior (e.g., multiple optimal actions), thereby limiting robot generalizability, applicability, and demonstration feasibility. To address this, this paper proposes designing imitation learning algorithms with a focus on utilizing human behavioral characteristics, thereby embodying principles for capturing and exploiting actual demonstrator behavioral characteristics. This paper presents the first imitation learning framework, Bayesian Disturbance Injection (BDI), that typifies human behavioral characteristics by incorporating model flexibility, robustification, and risk sensitivity. Bayesian inference is used to learn flexible non-parametric multi-action policies, while simultaneously robustifying policies by injecting risk-sensitive disturbances to induce human recovery action and ensuring demonstration feasibility. Our method is evaluated through risk-sensitive simulations and real-robot experiments (e.g., table-sweep task, shaft-reach task and shaft-insertion task) using the UR5e 6-DOF robotic arm, to demonstrate the improved characterization of behavior. Results show significant improvement in task performance, through improved flexibility, robustness as well as demonstration feasibility.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Robótica Tipo de estudo: Prognostic_studies Limite: Humans Idioma: En Revista: Neural Netw Assunto da revista: NEUROLOGIA Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Robótica Tipo de estudo: Prognostic_studies Limite: Humans Idioma: En Revista: Neural Netw Assunto da revista: NEUROLOGIA Ano de publicação: 2023 Tipo de documento: Article